School of Dentistry, Institute of Clinical Sciences, University of Birmingham and Birmingham Dental Hospital (Birmingham Community Healthcare Trust), Birmingham, UK.
School of Dental Sciences and Translational and Clinical Research Institute, Faculty of Medical Sciences, Newcastle University, Newcastle upon Tyne, UK.
J Clin Periodontol. 2022 Jul;49(7):622-632. doi: 10.1111/jcpe.13630. Epub 2022 Apr 29.
To discover and validate differential protein biomarker expression in saliva and gingival crevicular fluid (GCF) to discriminate objectively between periodontal health and plaque-induced periodontal disease states.
One-hundred and ninety participants were recruited from two centres (Birmingham and Newcastle upon Tyne, UK) comprising healthy, gingivitis, periodontitis, and edentulous donors. Samples from the Birmingham cohort were analysed by quantitative mass spectrometry proteomics for biomarker discovery. Shortlisted candidate proteins were then verified by enzyme-linked immunosorbent assay in both cohorts. Leave-one-out cross validation logistic regression analysis was used to identify the best performing biomarker panels.
Ninety-five proteins were identified in both GCF and saliva samples, and 15 candidate proteins were selected based upon differences discovered between the donor groups. The best performing panels to distinguish between: health or gingivitis and periodontitis contained matrix metalloproteinase-9 (MMP9), S100A8, alpha-1-acid glycoprotein (A1AGP), pyruvate kinase, and age (area under the curve [AUC] 0.970); health and gingivitis contained MMP9, S100A8, A1AGP, and pyruvate kinase, but not age (AUC 0.768); and mild to moderate and advanced periodontitis contained MMP9, S100A8, A1AGP, pyruvate kinase, and age (AUC 0.789).
Biomarker panels containing four proteins with and without age as a further parameter can distinguish between periodontal health and disease states.
发现和验证唾液和龈沟液(GCF)中差异蛋白生物标志物的表达,以客观地区分牙周健康和菌斑引起的牙周病状态。
从两个中心(英国伯明翰和泰恩河畔纽卡斯尔)招募了 190 名参与者,包括健康、牙龈炎、牙周炎和无牙患者。伯明翰队列的样本通过定量质谱蛋白质组学进行生物标志物发现分析。然后,在两个队列中通过酶联免疫吸附试验验证了候选蛋白。采用留一法交叉验证逻辑回归分析确定表现最佳的生物标志物组合。
在 GCF 和唾液样本中鉴定出 95 种蛋白质,并根据供体组之间发现的差异选择了 15 种候选蛋白质。区分健康或牙龈炎和牙周炎的最佳表现面板包含基质金属蛋白酶 9(MMP9)、S100A8、α-1-酸性糖蛋白(A1AGP)、丙酮酸激酶和年龄(曲线下面积 [AUC] 0.970);区分健康和牙龈炎的最佳表现面板包含 MMP9、S100A8、A1AGP 和丙酮酸激酶,但不包含年龄(AUC 0.768);区分轻度至中度和晚期牙周炎的最佳表现面板包含 MMP9、S100A8、A1AGP、丙酮酸激酶和年龄(AUC 0.789)。
包含四个蛋白质的生物标志物组合,以及年龄作为进一步参数,可以区分牙周健康和疾病状态。